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Incorporating stochastic analysis in wind turbine design: data-driven random temporal-spatial parameterization and uncertainty quantification

机译:将随机分析纳入风机设计:数据驱动的随机时空参数化和不确定性量化

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摘要

Wind turbines reliability is affected by stochastic factors in the turbulent inflow and wind turbine structures. On one hand, the variability in wind dynamics and the inherent stochastic structures result in random loads on wind turbine rotor and tower. On the other hand, the inherent structural uncertainties caused by imperfect control of manufacturing process introduce unpredictable failures and decreases wind generators availability. Therefore, to improve reliability, it is important to incorporate the variability in wind dynamics, and the inherent stochastic structures in analyzing and designing the next generation wind-turbines.In order to perform stochastic analysis on wind turbine, there are several improvements need to be made. Current stochastic wind turbine analyses are mostly based on incomplete turbulence input models. These models either failed to account for temporal variation of the stochastic wind field or unable to preserve spatial coherence which is a very important property that describes turbulence structure. On the subject of modeling wind turbine, most commonly used wind turbine design code is based on stead, lumped component blade models which lack the ability to describe the complex 3D fluid-structure interaction (FSI); which is essential to provide precise blade stress distribution and deformation details. Finally, when it comes to analyzing simulation results, most of existing work are done by analyzing the time response of wind turbine, without looking at the stochastic nature of performance of wind turbines, and its relationship between stochastic sources in turbulent inflow and turbine structure.In this work, we first develop a data driven temporal and spatial decomposition (TSD), which is capable of modeling any given large wind data set, to construct a low-dimensional yet realistic stochastic wind flow model. Results of several numerical examples on the TSD model show good consistency between given measured data and simulated synthetic turbulence. After that, a stochastic simulation based on TSD simulated full-field turbulence and a simplified wind turbine model is performed. The result of this analysis shows the adequacy of using TSD as turbulence simulation tool as well as the random nature of wind turbines\u27 performance. Finally, a stochastic analysis on a full scale 3D rich-structural wind turbine model with stochastic composite material properties is performed. With a given steady wind load, the model gives the deformation and the stress distribution of the blades. Critical regions that are most likely to have stress larger than design strength of the material were identified. Failure analysis is then performed based Tsai-Wu failure criterion.
机译:风力涡轮机的可靠性受湍流流入和风力涡轮机结构中的随机因素影响。一方面,风动力的可变性和固有的随机结构导致了风轮机转子和塔架上的随机载荷。另一方面,由于对制造过程的不完全控制而导致的固有结构不确定性会引入不可预测的故障,并降低风力发电机的可用性。因此,为了提高可靠性,在分析和设计下一代风力涡轮机时,必须将风力动力学的可变性和固有的随机结构纳入考虑范围,这一点很重要。为了对风力涡轮机进行随机分析,需要进行一些改进制作。当前的随机风力涡轮机分析主要基于不完整的湍流输入模型。这些模型要么无法考虑随机风场的时间变化,要么无法保持空间连贯性,这是描述湍流结构的非常重要的特性。关于风力涡轮机建模的主题,最常用的风力涡轮机设计规范基于稳固的集总组件叶片模型,这些模型缺乏描述复杂的3D流固耦合的能力。这对于提供精确的叶片应力分布和变形细节至关重要。最后,在分析仿真结果时,大多数现有工作都是通过分析风力涡轮机的时间响应来完成的,而没有考虑风力涡轮机性能的随机性及其在湍流中的随机源与涡轮机结构之间的关系。在这项工作中,我们首先开发一个数据驱动的时空分解(TSD),它能够对任何给定的大型风数据集进行建模,以构建一个低维但现实的随机风流模型。在TSD模型上的几个数值示例的结果表明,给定的测量数据与模拟的合成湍流之间具有良好的一致性。此后,基于TSD的全场湍流和简化的风力涡轮机模型进行了随机模拟。分析结果表明,将TSD用作湍流仿真工具是足够的,而且风力涡轮机的性能具有随机性。最后,对具有随机复合材料特性的全尺寸3D富结构风力涡轮机模型进行了随机分析。在给定的稳定风荷载下,该模型给出了叶片的变形和应力分布。确定了最有可能应力大于材料设计强度的关键区域。然后基于蔡-吴故障准则执行故障分析。

著录项

  • 作者

    Guo, Qiang;

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  • 年度 2013
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  • 原文格式 PDF
  • 正文语种 en
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